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Complex event recognition using constrained low-rank representation

机译:使用受限低秩表示的复杂事件识别

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Complex event recognition is the problem of recognizing events in long and unconstrained videos. In this extremely challenging task, concepts have recently shown a promising direction where core low-level events (referred to as concepts) are annotated and modeled using a portion of the training data, then each complex event is described using concept scores, which are features representing the occurrence confidence for the concepts in the event. However, because of the complex nature of the videos, both the concept models and the corresponding concept scores are significantly noisy. In order to address this problem, we propose a novel low-rank formulation, which combines the precisely annotated videos used to train the concepts, with the rich concept scores. Our approach finds a new representation for each event, which is not only low-rank, but also constrained to adhere to the concept annotation, thus suppressing the noise, and maintaining a consistent occurrence of the concepts in each event. Extensive experiments on large scale real world dataset TRECVID Multimedia Event Detection 2011 and 2012 demonstrate that our approach consistently improves the discriminativity of the concept scores by a significant margin. (C) 2015 Published by Elsevier B.V.
机译:复杂的事件识别是识别长而不受限制的视频中的事件的问题。在这项极具挑战性的任务中,概念最近显示出了一个有希望的方向,其中使用部分训练数据对核心低级事件(称为概念)进行注释和建模,然后使用概念评分来描述每个复杂事件,这是功能表示事件中概念的发生置信度。但是,由于视频的复杂性,概念模型和相应的概念分数都非常嘈杂。为了解决此问题,我们提出了一种新颖的低等级表述,将用于训练概念的带有精确注释的视频与丰富的概念分数相结合。我们的方法为每个事件找到一个新的表示形式,它不仅级别低,而且必须遵守概念注释,从而抑制了噪音,并在每个事件中保持了概念的一致出现。在大规模真实世界数据集TRECVID多媒体事件检测2011和2012上进行的大量实验表明,我们的方法始终如一地提高了概念评分的可分辨性。 (C)2015由Elsevier B.V.发布

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